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Graph-based change detection for condition monitoring of industrial machinery: an enhanced framework for non-stationary condition signals

机译:工业机械条件监测的基于图的变化检测:非静止状态信号的增强框架

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摘要

The detection of change(s) in machine running state has become an important problem in the field of condition monitoring of industrial machinery. The graph model has been introduced very recently for this problem with an assumption of periodical stationarity of condition signals. In real-world engineering scenarios, however, machines often operate under unsteady environment and external loading conditions, thus resulting in non-stationary condition signals. This paper is a significant upgrade and expansion on the potential of the graph model to machine monitoring under unsteady operating conditions, where the collected signals are considered to be non-stationary. This paper proposes a new algorithm to achieve this end, which basically includes two steps: cycle segmentation and cycle normalization. Cycle segmentation is first performed to temporally divide the original data into individual cycles. The resulting cycles are subsequently normalized with a timing average procedure. With this, the obtained periodically normalized data can be appropriate for the graph model to process. Meanwhile, in order to avoid the over-segmentation problem, a control time-line is also designed, and simultaneously operates to report a potential change when performing cycle segmentation and normalization. The proposed algorithm is validated on both simulation data and real-world engineering signals. Experimental results reveal its great potential in real applications.
机译:在机械运行状态中的变化检测已成为工业机械的状态监测领域的重要问题。最近介绍了图形模型,以便在条件信号的定期平稳性的假设中引入了这个问题。然而,在真实的工程方案中,机器经常在不稳定的环境和外部加载条件下运行,从而导致非静止状态信号。本文是在不稳定的操作条件下对机器监控的潜力进行显着升级和扩展,其中收集的信号被认为是非静止的。本文提出了一种实现此目的的新算法,基本上包括两个步骤:循环分割和循环标准化。首先执行循环分割以将原始数据划分为单独的周期。随后将得到的循环与定时平均程序归一化。由此,所获得的定期归一化数据可以适用于图形模型来处理。同时,为了避免过分分割问题,还设计了控制时间线,并且同时操作以在执行循环分割和归一化时报告电位变化。在模拟数据和真实世界的工程信号上验证了所提出的算法。实验结果揭示了实际应用中的巨大潜力。

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